LLM Comparisono1Gemini 3.1 Pro

o1 vs Gemini 3.1 Pro

Compare o1 and Gemini 3.1 Pro. Build AI products powered by either model on Appaca.

Model Comparison

Featureo1Gemini 3.1 Pro
ProviderOpenAIGoogle
Model Typetexttext
Context Window200,000 tokens1,048,576 tokens
Input Cost
$15.00/ 1M tokens
$4.00/ 1M tokens
Output Cost
$60.00/ 1M tokens
$18.00/ 1M tokens

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Strengths & Best Use Cases

o1

OpenAI

1. Full-scale reasoning model

  • Uses reinforcement learning to generate long internal chains of thought.
  • Suitable for tasks requiring deep logic, multi-step planning, and rich analytical reasoning.

2. Strong performance across domains

  • Excellent at math, science, coding, and structured analytical work.
  • Handles multi-step workflows and complex problem-solving with high consistency.

3. High output capacity (100K tokens)

  • Enables long, detailed explanations, large documents, and multi-part analyses.

4. Image-understanding capable

  • Accepts text + image inputs for visual reasoning and mixed-modality tasks.
  • Output is text only, optimized for clear explanations.

5. Advanced API compatibility

  • Works with Chat Completions, Responses, Realtime, Assistants, and more.
  • Supports streaming, function calling, and structured outputs.

6. Stable long-context performance

  • 200K-token context window supports large files, multi-document analysis, and extended conversations.

7. Designed for correctness-oriented workloads

  • Prioritizes rigorous reasoning over speed.
  • Useful in auditing, verification, scientific thinking, policy analysis, and legal-style reasoning.

8. Powerful but expensive

  • High token costs make it suitable for selective, mission-critical reasoning rather than high-volume usage.

Gemini 3.1 Pro

Google

1. Google's most advanced reasoning Gemini model

  • Designed to solve complex problems across multimodal inputs, including text, audio, images, video, PDFs, and full code repositories.
  • Google highlights improved software engineering behavior, better agentic performance, and stronger usability in domains like finance and spreadsheets.

2. Large multimodal context with substantial output room

  • Supports a 1,048,576 token input context window for large repositories, long documents, and multi-source workflows.
  • Allows up to 65,536 output tokens for longer answers, plans, and code generations.

3. More efficient thinking with expanded controls

  • Improves token efficiency and reasoning performance across use cases.
  • Adds the MEDIUM thinking_level option to better balance cost, speed, and quality.

4. Strong support for production agents

  • Supports grounding with Google Search, code execution, function calling, structured outputs, context caching, RAG, and chat completions.
  • Also offers a custom-tools endpoint tuned for agentic workflows that mix bash-like tools with custom code tools.

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